--- title: README emoji: "\u26A1" colorFrom: yellow colorTo: yellow sdk: static pinned: false --- # Lightning Rod Labs **Train with Timestamps, Not Labels.** Lightning Rod Labs automatically generates high-quality training data from your documents or public sources — no labeling or extraction required. Define your criteria in Python, and our SDK treats real-world outcomes as the label, producing high-signal supervision at scale. Models learn causal factors, not just tokens. Raw data to deployable specialized models in hours. [Website](https://lightningrod.ai/) · [SDK](https://github.com/lightning-rod-labs/lightningrod-python-sdk) · [Blog](https://blog.lightningrod.ai/) --- ## How It Works We generate grounded, model-ready training data from documents or public sources (Google News, SEC filings, market data). You define your criteria in Python, and our SDK uses the **future as the label** — turning messy, timestamped history into training signal automatically. No labeling pipelines, no extraction, no human annotation. This approach has been used to beat frontier AIs 100x larger on prediction-market benchmarks, and has demonstrated success in financial forecasting, risk estimation, and policy prediction. --- ## Research & Results - **[SEC Risk Prediction](https://arxiv.org/abs/2601.19189)**: Foresight learning on raw SEC filings trains a 32B model to outperform GPT-5 at predicting public company risks. - **[Future-as-Label](https://arxiv.org/abs/2601.06336)**: AI learns directly from raw chronological news data at unlimited scale, no human annotation. - **[Outcome-based RL](https://arxiv.org/abs/2505.17989)** (TMLR): Using RL to improve LLM forecasting ability from real-world outcomes. - **[Foresight-32B vs. Frontier LLMs](https://blog.lightningrod.ai/p/foresight-32b-beats-frontier-llms-on-live-polymarket-predictions)**: Live demonstration beating frontier models on Polymarket predictions. Foresight-32B is consistently top-ranked on [ForecastBench](https://www.forecastbench.org/tournament/) and [ProphetArena](https://www.prophetarena.co/leaderboard), despite being 10x-100x smaller than frontier models.